作者
Patrik Jonell, Taras Kucherenko, Erik Ekstedt, Jonas Beskow
发表日期
2019
研讨会论文
ICDL-EPIROB 2019 Workshop on Naturalistic Non-Verbal and Affective Human-Robot Interactions
简介
Non-verbal behavior is crucial for positive perception of humanoid robots. If modeled well it can improve the interaction and leave the user with a positive experience, on the other hand, if it is modelled poorly it may impede the interaction and become a source of distraction. Most of the existing work on modeling non-verbal behavior show limited variability due to the fact that the models employed are deterministic and the generated motion can be perceived as repetitive and predictable. In this paper, we present a novel method for generation of a limited set of facial expressions and head movements, based on a probabilistic generative deep learning architecture called Glow. We have implemented a workflow which takes videos directly from YouTube, extracts relevant features, and trains a model that generates gestures that can be realized in a robot without any post processing. A user study was conducted and illustrated the importance of having any kind of non-verbal behavior while most differences between the ground truth, the proposed method, and a random control were not significant (however, the differences that were significant were in favor of the proposed method).
引用总数
2020202120222023202444225
学术搜索中的文章
P Jonell, T Kucherenko, E Ekstedt, J Beskow - ICDL-EpiRob Workshop on Naturalistic Non-Verbal …, 2019